首页> 外文OA文献 >Topic modeling of biomedical text: from words and topics to disease and gene links
【2h】

Topic modeling of biomedical text: from words and topics to disease and gene links

机译:生物医学文本的主题建模:从单词和主题到疾病和基因链接

摘要

The massive growth of biomedical text makes it very challenging for researchers to review all relevant work and generate all possible hypotheses in a reasonable amount of time. Many text mining methods have been developed to simplify this process and quickly present the researcher with a learned set of biomedical hypotheses that could be potentially validated. Previously, we have focused on the task of identifying genes that are linked with a given disease by text mining the PubMed abstracts. We applied a word-based concept profile similarity to learn patterns between disease and gene entities and hence identify links between them. In this work, we study an alternative approach based on topic modelling to learn different patterns between the disease and the gene entities and measure how well this affects the identified links. We investigated multiple input corpuses, word representations, topic parameters, and similarity measures. On one hand, our results show that when we (1) learn the topics from an input set of gene-clustered set of abstracts, and (2) apply the dot-product similarity measure, we succeed to improve our original methods and identify more correct disease-gene links. On the other hand, the results also show that the learned topics remain limited to the diseases existing in our vocabulary such that scaling the methodology to new disease queries becomes non trivial.
机译:生物医学文本的大量增长使研究人员在合理的时间内审查所有相关工作并生成所有可能的假设变得非常困难。已经开发了许多文本挖掘方法来简化此过程,并迅速为研究人员提供可以潜在地验证的一组学习的生物医学假设。以前,我们专注于通过文本挖掘PubMed摘要来识别与特定疾病相关的基因的任务。我们应用了基于单词的概念概况相似性,以学习疾病与基因实体之间的模式,从而确定它们之间的联系。在这项工作中,我们研究了一种基于主题建模的替代方法,以了解疾病与基因实体之间的不同模式,并评估其对所识别链接的影响程度。我们调查了多个输入语料库,单词表示,主题参数和相似性度量。一方面,我们的结果表明,当我们(1)从一组基因簇摘要的输入集中学习主题,并且(2)应用点积相似性度量时,我们成功地改进了原始方法并确定了更多方法纠正疾病与基因的联系。另一方面,结果还表明,所学习的主题仍然仅限于我们词汇表中存在的疾病,因此将方法论扩展到新的疾病查询变得不容易。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号